Planejamento de geração de energia complementar térmica associada a energias renováveis utilizando inteligência artificial

Detalhes bibliográficos
Ano de defesa: 2019
Autor(a) principal: Hammerschmitt, Bruno Knevitz lattes
Orientador(a): Abaide, Alzenira da Rosa lattes
Banca de defesa: Guarda, Fernando Guilherme Kaehler, Figueiredo, Rodrigo Marques de
Tipo de documento: Dissertação
Tipo de acesso: Acesso aberto
Idioma: por
Instituição de defesa: Universidade Federal de Santa Maria
Centro de Tecnologia
Programa de Pós-Graduação: Programa de Pós-Graduação em Engenharia Elétrica
Departamento: Engenharia Elétrica
País: Brasil
Palavras-chave em Português:
Palavras-chave em Inglês:
Área do conhecimento CNPq:
Link de acesso: http://repositorio.ufsm.br/handle/1/23709
Resumo: The Brazilian Electrical System has a diversified electric power generation matrix, nevertheless it is mainly composed by hydrothermal generation. In this sense, the operational planning of this system can be detailed as a large-scale optimization problem, where is necessary to use resources in a rational way, by operations dynamic, stochastic, interconnected and non-linear. The electric energy generation is susceptible to climatic variations, since the precipitations reduction causes a decrease in the hydroelectric plants reservoirs and consequently a falling in the electric energy production. The use of wind energy has been growing in recent years as an alternative to solve an eminent energy crisis. However, this power source requires adequate planning in order for the electric system operate in a safe a reliable way, due to its intermittent behavior and low predictability. In order to overcome the limitations of the energy sources mentioned above, it is necessary to guarantee the power service by reliable energy sources, like thermal generation, which is considered as a source of reliable energy because it does not suffer external influences. Among the thermal sources that compose the Brazilian Electric power generation matrix, Natural Gas has become the main fuel due to it being less aggressive to the environment compared to the others fossil fuels and by the proven national supply, which characterizes it as a reference for expansion in short time. Thus, this study proposes a shortterm modeling and simulation structure to predict the electric power production capacity for the southern subsystem generation park, analyzing the generation forecasting and emphasizing the complementarity of energy imposed on thermal generation, taking into account operation historical series. For the electric power generation forecasting modeling, a Multilayer Perceptron Artificial Neural Networks (MLP ANNs) structure was employed, due to its ability to learning by complex non-linear relationships between input and output variables from a data. In addition, to generate multicenary (critical, ideal and optimistic), the Monte Carlo Method (MCM) was used. The prediction results obtained by MLP ANN for the rates the MAE and RMSE respectively 3.22% and 4.01% to hydropower generation, and the 5.36% and 6.31% to wind generation. In addition, with results of MLP ANN and MCM combination proved that it is possible to quantify the energy availability of the south subsystem generation parks through in the adverse conditions, emphasizing the importance of the prediction model to improve the planning and operation of an electric system.
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spelling 2022-02-22T17:53:09Z2022-02-22T17:53:09Z2019-07-29http://repositorio.ufsm.br/handle/1/23709The Brazilian Electrical System has a diversified electric power generation matrix, nevertheless it is mainly composed by hydrothermal generation. In this sense, the operational planning of this system can be detailed as a large-scale optimization problem, where is necessary to use resources in a rational way, by operations dynamic, stochastic, interconnected and non-linear. The electric energy generation is susceptible to climatic variations, since the precipitations reduction causes a decrease in the hydroelectric plants reservoirs and consequently a falling in the electric energy production. The use of wind energy has been growing in recent years as an alternative to solve an eminent energy crisis. However, this power source requires adequate planning in order for the electric system operate in a safe a reliable way, due to its intermittent behavior and low predictability. In order to overcome the limitations of the energy sources mentioned above, it is necessary to guarantee the power service by reliable energy sources, like thermal generation, which is considered as a source of reliable energy because it does not suffer external influences. Among the thermal sources that compose the Brazilian Electric power generation matrix, Natural Gas has become the main fuel due to it being less aggressive to the environment compared to the others fossil fuels and by the proven national supply, which characterizes it as a reference for expansion in short time. Thus, this study proposes a shortterm modeling and simulation structure to predict the electric power production capacity for the southern subsystem generation park, analyzing the generation forecasting and emphasizing the complementarity of energy imposed on thermal generation, taking into account operation historical series. For the electric power generation forecasting modeling, a Multilayer Perceptron Artificial Neural Networks (MLP ANNs) structure was employed, due to its ability to learning by complex non-linear relationships between input and output variables from a data. In addition, to generate multicenary (critical, ideal and optimistic), the Monte Carlo Method (MCM) was used. The prediction results obtained by MLP ANN for the rates the MAE and RMSE respectively 3.22% and 4.01% to hydropower generation, and the 5.36% and 6.31% to wind generation. In addition, with results of MLP ANN and MCM combination proved that it is possible to quantify the energy availability of the south subsystem generation parks through in the adverse conditions, emphasizing the importance of the prediction model to improve the planning and operation of an electric system.O sistema elétrico brasileiro possui uma matriz de geração de energia elétrica diversificada, porém é composto principalmente por geração hidrotérmica. Nesse sentido, o planejamento operacional de um sistema como este pode ser detalhado como um problema de otimização em grande escala, em que é necessário fazer o uso dos recursos de maneira racional, através de operações dinâmicas, estocásticas, interligadas e não-lineares. A geração de energia elétrica é susceptível à variações climáticas, uma vez que a redução de precipitação causa a redução dos níveis dos reservatórios das usinas hidrelétricas e, consequentemente, uma diminuição no potencial de geração de energia. Nos últimos anos, a geração eólica de energia tem crescido, emergindo como uma alternativa para evitar uma possível crise energética. No entanto, esta fonte de energia requer um planejamento adequado para operação do sistema de maneira segura e confiável, pelo fato de ser uma fonte geradora intermitente, além de ser considerada de baixa previsibilidade. Nesse sentido, a fim de contornar as limitações das fontes de energia já citadas, faz-se necessário garantir o atendimento de potência por fontes de energia confiáveis, como a geração térmica, pois esta não sofre influências externas, como dependência de fenômenos naturais (chuva, vento, iluminação solar). Dentre as fontes térmicas que compõem a matriz de geração de energia elétrica brasileira, o Gás Natural tem se tornado o principal combustível por ser menos agressivo ao meio ambiente em comparação com outros combustíveis, e pela oferta nacional comprovada, que o caracteriza como referência de expansão a curto prazo. Assim, este estudo propõe uma estrutura de modelagem e simulação a curto prazo para prever a capacidade de produção de energia elétrica para o parque de geração do Subsistema Sul do Brasil (SSB), analisando a previsão de geração e dando destaque na complementariedade de energia imposta a geração térmica, levando em conta séries históricas de operação. Para a modelagem da previsão de geração de energia elétrica, foi empregada uma estrutura de Redes Neurais Artificiais Perceptron Multicamadas (RNA PM), devido a sua capacidade de aprendizado de relações não lineares complexas entre variáveis de entrada e saída a partir de um banco de dados. Além disso, para gerar multicenários (crítico, ideal e otimista), o Método de Monte Carlo (MMC) foi utilizado. Os resultados de previsão obtidos via RNA PM teve para MAE e RMSE respectivamente as taxas de 3,22% e 4,01% para geração hídrica, e de 5,36% e 6,31% para geração eólica. Além disso, com resultados entre a junção das RNA PM e MMC foi possível quantificar a disponibilidade de energia dos parques de geração do SSB frente a condições adversas, ressaltando a importância do modelo de previsão para auxílio no planejamento e operação de um sistema elétrico.Coordenação de Aperfeiçoamento de Pessoal de Nível Superior - CAPESporUniversidade Federal de Santa MariaCentro de TecnologiaPrograma de Pós-Graduação em Engenharia ElétricaUFSMBrasilEngenharia ElétricaAttribution-NonCommercial-NoDerivatives 4.0 Internationalhttp://creativecommons.org/licenses/by-nc-nd/4.0/info:eu-repo/semantics/openAccessPrevisão de geração de energiaRedes neurais artificiaisMonte CarloGeração térmicaGás naturalPower generation forecastingArtificial neural networksThermal generationNatural gasCNPQ::ENGENHARIAS::ENGENHARIA ELETRICAPlanejamento de geração de energia complementar térmica associada a energias renováveis utilizando inteligência artificialPlanning of thermal complementary energy generation associated with renewable energies using artificial intelligenceinfo:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/masterThesisAbaide, Alzenira da Rosahttp://lattes.cnpq.br/2427825596072142Guarda, Fernando Guilherme KaehlerFigueiredo, Rodrigo Marques dehttp://lattes.cnpq.br/4865207592578956Hammerschmitt, Bruno Knevitz3004000000076006006006777278d-7b2f-4400-81f8-c04c5b371ad4814d5bec-9022-4d3f-b14c-36df1ce4e0342b93caf1-3a67-4c78-b8f6-8dfce6de1d6f6bda9af2-276e-4408-9f88-7abbced87dcareponame:Manancial - Repositório Digital da UFSMinstname:Universidade Federal de Santa Maria (UFSM)instacron:UFSMCC-LICENSElicense_rdflicense_rdfapplication/rdf+xml; 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dc.title.por.fl_str_mv Planejamento de geração de energia complementar térmica associada a energias renováveis utilizando inteligência artificial
dc.title.alternative.eng.fl_str_mv Planning of thermal complementary energy generation associated with renewable energies using artificial intelligence
title Planejamento de geração de energia complementar térmica associada a energias renováveis utilizando inteligência artificial
spellingShingle Planejamento de geração de energia complementar térmica associada a energias renováveis utilizando inteligência artificial
Hammerschmitt, Bruno Knevitz
Previsão de geração de energia
Redes neurais artificiais
Monte Carlo
Geração térmica
Gás natural
Power generation forecasting
Artificial neural networks
Thermal generation
Natural gas
CNPQ::ENGENHARIAS::ENGENHARIA ELETRICA
title_short Planejamento de geração de energia complementar térmica associada a energias renováveis utilizando inteligência artificial
title_full Planejamento de geração de energia complementar térmica associada a energias renováveis utilizando inteligência artificial
title_fullStr Planejamento de geração de energia complementar térmica associada a energias renováveis utilizando inteligência artificial
title_full_unstemmed Planejamento de geração de energia complementar térmica associada a energias renováveis utilizando inteligência artificial
title_sort Planejamento de geração de energia complementar térmica associada a energias renováveis utilizando inteligência artificial
author Hammerschmitt, Bruno Knevitz
author_facet Hammerschmitt, Bruno Knevitz
author_role author
dc.contributor.advisor1.fl_str_mv Abaide, Alzenira da Rosa
dc.contributor.advisor1Lattes.fl_str_mv http://lattes.cnpq.br/2427825596072142
dc.contributor.referee1.fl_str_mv Guarda, Fernando Guilherme Kaehler
dc.contributor.referee2.fl_str_mv Figueiredo, Rodrigo Marques de
dc.contributor.authorLattes.fl_str_mv http://lattes.cnpq.br/4865207592578956
dc.contributor.author.fl_str_mv Hammerschmitt, Bruno Knevitz
contributor_str_mv Abaide, Alzenira da Rosa
Guarda, Fernando Guilherme Kaehler
Figueiredo, Rodrigo Marques de
dc.subject.por.fl_str_mv Previsão de geração de energia
Redes neurais artificiais
Monte Carlo
Geração térmica
Gás natural
topic Previsão de geração de energia
Redes neurais artificiais
Monte Carlo
Geração térmica
Gás natural
Power generation forecasting
Artificial neural networks
Thermal generation
Natural gas
CNPQ::ENGENHARIAS::ENGENHARIA ELETRICA
dc.subject.eng.fl_str_mv Power generation forecasting
Artificial neural networks
Thermal generation
Natural gas
dc.subject.cnpq.fl_str_mv CNPQ::ENGENHARIAS::ENGENHARIA ELETRICA
description The Brazilian Electrical System has a diversified electric power generation matrix, nevertheless it is mainly composed by hydrothermal generation. In this sense, the operational planning of this system can be detailed as a large-scale optimization problem, where is necessary to use resources in a rational way, by operations dynamic, stochastic, interconnected and non-linear. The electric energy generation is susceptible to climatic variations, since the precipitations reduction causes a decrease in the hydroelectric plants reservoirs and consequently a falling in the electric energy production. The use of wind energy has been growing in recent years as an alternative to solve an eminent energy crisis. However, this power source requires adequate planning in order for the electric system operate in a safe a reliable way, due to its intermittent behavior and low predictability. In order to overcome the limitations of the energy sources mentioned above, it is necessary to guarantee the power service by reliable energy sources, like thermal generation, which is considered as a source of reliable energy because it does not suffer external influences. Among the thermal sources that compose the Brazilian Electric power generation matrix, Natural Gas has become the main fuel due to it being less aggressive to the environment compared to the others fossil fuels and by the proven national supply, which characterizes it as a reference for expansion in short time. Thus, this study proposes a shortterm modeling and simulation structure to predict the electric power production capacity for the southern subsystem generation park, analyzing the generation forecasting and emphasizing the complementarity of energy imposed on thermal generation, taking into account operation historical series. For the electric power generation forecasting modeling, a Multilayer Perceptron Artificial Neural Networks (MLP ANNs) structure was employed, due to its ability to learning by complex non-linear relationships between input and output variables from a data. In addition, to generate multicenary (critical, ideal and optimistic), the Monte Carlo Method (MCM) was used. The prediction results obtained by MLP ANN for the rates the MAE and RMSE respectively 3.22% and 4.01% to hydropower generation, and the 5.36% and 6.31% to wind generation. In addition, with results of MLP ANN and MCM combination proved that it is possible to quantify the energy availability of the south subsystem generation parks through in the adverse conditions, emphasizing the importance of the prediction model to improve the planning and operation of an electric system.
publishDate 2019
dc.date.issued.fl_str_mv 2019-07-29
dc.date.accessioned.fl_str_mv 2022-02-22T17:53:09Z
dc.date.available.fl_str_mv 2022-02-22T17:53:09Z
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http://creativecommons.org/licenses/by-nc-nd/4.0/
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rights_invalid_str_mv Attribution-NonCommercial-NoDerivatives 4.0 International
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eu_rights_str_mv openAccess
dc.publisher.none.fl_str_mv Universidade Federal de Santa Maria
Centro de Tecnologia
dc.publisher.program.fl_str_mv Programa de Pós-Graduação em Engenharia Elétrica
dc.publisher.initials.fl_str_mv UFSM
dc.publisher.country.fl_str_mv Brasil
dc.publisher.department.fl_str_mv Engenharia Elétrica
publisher.none.fl_str_mv Universidade Federal de Santa Maria
Centro de Tecnologia
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